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首页> 外文期刊>Applied Soft Computing >An augmented multi-objective particle swarm optimizer for building cluster operation decisions
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An augmented multi-objective particle swarm optimizer for building cluster operation decisions

机译:用于构建集群操作决策的增强型多目标粒子群优化器

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It is envisioned that other than the grid-building communication, the smart buildings could potentially treat connected neighborhood buildings as a local buffer thus forming a local area energy network through the smart grid. As the hardware technology is in place, what is needed is an intelligent algorithm that coordinates a cluster of buildings to obtain Pareto decisions on short time scale operations. Research has proposed a memetic algorithm (MA) based framework for building cluster operation decisions and it demonstrated the framework is capable of deriving the Pareto solutions on an 8-h operation horizon and reducing overall energy costs. While successful; the memetic algorithm is computational expensive which limits its application to building operation decisions on an hourly time scale. To address this challenge, we propose a particle swarm framework, termed augmented multi-objective particle swarm optimization (AMOPSO). The performance of the proposed AMOPSO in terms of solution quality and convergence speed is improved via the fusion of multiple search methods. Extensive experiments are conducted to compare the proposed AMOPSO with nine multi-objective PSO algorithms (MOPSOs) and multi-objective evolutionary algorithms (MOEAs) collected from the literature. Results demonstrate that AMOPSO outperforms the nine state-of-the-art MOPSOs and MOEAs in terms of epsilon, spread, and hypervolume indicator. A building cluster case is then studied to show that the AMOPSO based decision framework is able to make hourly based operation decisions which could significantly improve energy efficiency and achieve more energy cost savings for the smart buildings.
机译:可以预见,除了电网建设通信之外,智能建筑还可能将相连的邻里建筑视为本地缓冲区,从而通过智能电网形成局域网能源网络。随着硬件技术的到位,需要的是一种智能算法,该算法可协调建筑物群以获取有关短时间尺度操作的Pareto决策。研究提出了一种基于模因算法(MA)的框架,用于建立集群操作决策,并证明了该框架能够在8小时操作范围内推导Pareto解决方案,并降低总体能源成本。成功时;模因算法的计算量很大,这限制了其在每小时小时尺度上建立操作决策的应用。为了解决这一挑战,我们提出了一种粒子群框架,称为增强型多目标粒子群优化(AMOPSO)。通过融合多种搜索方法,提出的AMOPSO在解决方案质量和收敛速度方面的性能得到了改善。进行了广泛的实验,以将提出的AMOPSO与从文献中收集的9种多目标PSO算法(MOPSO)和多目标进化算法(MOEA)进行比较。结果表明,在ε,扩散和超量指标方面,AMPOSO优于九种最新的MOPSO和MOEA。然后研究了一个建筑群案例,以表明基于AMOPSO的决策框架能够按小时制定运行决策,从而可以显着提高能源效率并为智能建筑节省更多的能源成本。

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